Edit ‘the_seventy_maxims_of_maximally_effective_machine_learning_engineers’

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osmarks
2025-10-03 11:01:19 +00:00
committed by wikimind
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commit 88c415a14a

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@@ -14,7 +14,7 @@ Based on [[https://schlockmercenary.fandom.com/wiki/The_Seventy_Maxims_of_Maxima
*. A gentle learning rate turneth away divergence. Once the loss stabilizes, crank it up.
*. Do unto others hyperparameters as you would have them do unto yours.
*. “Innovative architecture” means never asking “did we implement a proper baseline?”
*. Only you can prevent vanishing gradients.
*. Only you can prevent reward hacking.
*. Your model is in the leaderboards: be sure it has dropout.
*. The longer training goes without overfitting, the bigger the validation-set disaster.
*. If the optimizer is leading from the front, watch for exploding gradients in the rear.